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Modeling the Formation Process of Grouping Stimuli Sets through Cortical Columns and Microcircuits to Feature Neurons

机译:通过皮质柱和微电路对神经元进行分组的刺激集的形成过程建模

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摘要

A computational model of a self-structuring neuronal net is presented in which repetitively applied pattern sets induce the formation of cortical columns and microcircuits which decode distinct patterns after a learning phase. In a case study, it is demonstrated how specific neurons in a feature classifier layer become orientation selective if they receive bar patterns of different slopes from an input layer. The input layer is mapped and intertwined by self-evolving neuronal microcircuits to the feature classifier layer. In this topical overview, several models are discussed which indicate that the net formation converges in its functionality to a mathematical transform which maps the input pattern space to a feature representing output space. The self-learning of the mathematical transform is discussed and its implications are interpreted. Model assumptions are deduced which serve as a guide to apply model derived repetitive stimuli pattern sets to in vitro cultures of neuron ensembles to condition them to learn and execute a mathematical transform.
机译:提出了一种自构造神经元网络的计算模型,其中重复应用的模式集会诱导皮质柱和微电路的形成,这些皮质和微电路会在学习阶段后解码出不同的模式。在一个案例研究中,证明了如果特征分类器层中的特定神经元从输入层接收到不同斜率的条形图样,它们如何变得定向选择性。输入层通过自演化神经元微电路映射并交织到特征分类器层。在本主题概述中,讨论了几种模型,这些模型指示网形成在功能上收敛于数学变换,该数学变换将输入模式空间映射到表示输出空间的特征。讨论了数学变换的自学习,并解释了其含义。推导模型假设,以作为将模型得出的重复刺激模式集应用于神经元集成体体外培养的条件的指导,以使其适应学习和执行数学转换的条件。

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